Multi-component based cross correlation beat detection in electrocardiogram analysis
Autor: | Thorsten Last, Chris D Nugent, Frank J Owens |
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Jazyk: | angličtina |
Rok vydání: | 2004 |
Předmět: |
Offset (computer science)
lcsh:Medical technology Computer science Biomedical Engineering Beat (acoustics) Beat detection Biomaterials QRS complex Electrocardiography Electronic engineering Waveform Humans Radiology Nuclear Medicine and imaging Diagnosis Computer-Assisted Radiological and Ultrasound Technology Cross-correlation business.industry Research Reproducibility of Results Pattern recognition General Medicine lcsh:R855-855.5 Point location Artificial intelligence business Fiducial marker Algorithms |
Zdroj: | BioMedical Engineering BioMedical Engineering OnLine, Vol 3, Iss 1, p 26 (2004) |
ISSN: | 1475-925X |
Popis: | Background The first stage in computerised processing of the electrocardiogram is beat detection. This involves identifying all cardiac cycles and locating the position of the beginning and end of each of the identifiable waveform components. The accuracy at which beat detection is performed has significant impact on the overall classification performance, hence efforts are still being made to improve this process. Methods A new beat detection approach is proposed based on the fundamentals of cross correlation and compared with two benchmarking approaches of non-syntactic and cross correlation beat detection. The new approach can be considered to be a multi-component based variant of traditional cross correlation where each of the individual inter-wave components are sought in isolation as opposed to being sought in one complete process. Each of three techniques were compared based on their performance in detecting the P wave, QRS complex and T wave in addition to onset and offset markers for 3000 cardiac cycles. Results Results indicated that the approach of multi-component based cross correlation exceeded the performance of the two benchmarking techniques by firstly correctly detecting more cardiac cycles and secondly provided the most accurate marker insertion in 7 out of the 8 categories tested. Conclusion The main benefit of the multi-component based cross correlation algorithm is seen to be firstly its ability to successfully detect cardiac cycles and secondly the accurate insertion of the beat markers based on pre-defined values as opposed to performing individual gradient searches for wave onsets and offsets following fiducial point location. |
Databáze: | OpenAIRE |
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